Proximal Hyperspectral Image Dataset of Various Crops and Weeds for Classification via Machine Learning and Deep Learning Techniques
About the Data
The data consists of proximal hyperspectral images of canola, soybean, sugarbeet, kochia, ragweed, redroot pigweed and waterhemp. The data was collected in the near infrared range of 400–1000 nm using Specim FX10 hyperspectral sensor, under controlled halogen light source. The platform and data acquisition software used for data collection was SPECIM's LabScanner system and Lumo Scanner respectively. The raw hyperspectral images were reference calibrated using the white and dark reference image. The hyperspectral images are saved as Numpy Array (.npy) files in their respective directories. Support Jupyter Notebooks provide additional tools for augmentation, region of interest selection, and spectral preprocessing.
Benefit of Data
- Data can enhance the number of data points for machine learning and deep learning models, aiding in classification or identification tasks.
- It can serve as a valuable instrument for studies in spectroscopy.
- It can assist in the development and testing of three-dimensional data models.
Dataset Information
Each plant consists of 20 images, each image having four plants. Except in the case of redroot pigweed which has one plant/image and consists of 40 images.
Number of images:
- canola = 20
- soybean = 20
- sugarbeet = 20
- kochia = 20
- ragweed = 20
- redroot_pigweed = 40
- water hemp = 20
Funding
USDA: 58-6064-8-023
Imaging technologies in precision agriculture can be used to address crop and livestock production issues in North Dakota
National Institute of Food and Agriculture
Find out more...History
Data contact name
Ram, Billy, G.Data contact email
billy.ram@ndsu.eduPublisher
Ag Data CommonsIntended use
This dataset serves multiple purposes, including validating weed classification and identification models. Additionally, it can be utilized for model development, analysis pipelines, and creating tools for handling three-dimensional plant canopy data.Use limitations
1. The dataset includes noise in specific wavelengths. 2. The lighting conditions are not consistent throughout. 3. Leaves that occlude other parts of the plant are present in the dataset.Temporal Extent Start Date
2021-06-01Temporal Extent End Date
2022-08-01Frequency
- notPlanned
Theme
- Non-geospatial
Geographic location - description
1. Greenhouse, North Dakota State University • Latitude and longitude: 46°53'42.4"N 96°48'19.6"W • City/town/region: Fargo • State: North Dakota • Country: USA 2. Carrington Research Extension Center • Latitude and longitude: 47°30'30.0"N 99°07'25.0"W • City/town/region: Carrington • State: North Dakota • Country: USAISO Topic Category
- farming
Ag Data Commons Group
- AgBioData
National Agricultural Library Thesaurus terms
hyperspectral imagery; data collection; crops; weeds; artificial intelligence; canola; soybeans; sugar beet; Bassia (Amaranthaceae); halogens; computer software; scanners; models; spectroscopy; hemp; canopy; wavelengths; lighting; leavesPending citation
- No
Public Access Level
- Public